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MannequinChallenge: Learning the Depths of Moving People by Watching Frozen People

Zhengqi Li, Tali Dekel, Forrester Cole, Richard Tucker, Noah Snavely, Ce Liu, William T. Freeman

2020IEEE Transactions on Pattern Analysis and Machine Intelligence29 citationsDOIOpen Access PDF

Abstract

We present a method for predicting dense depth in scenarios where both a monocular camera and people in the scene are freely moving (right). Existing methods for recovering depth for dynamic, non-rigid objects from monocular video impose strong assumptions on the objects' motion and may only recover sparse depth. In this paper, we take a data-driven approach and learn human depth priors from a new source of data: thousands of Internet videos of people imitating mannequins, i.e., freezing in diverse, natural poses, while a hand-held camera tours the scene (left). Because people are stationary, geometric constraints hold, thus training data can be generated using multi-view stereo reconstruction. At inference time, our method uses motion parallax cues from the static areas of the scenes to guide the depth prediction. We evaluate our method on real-world sequences of complex human actions captured by a moving hand-held camera, show improvement over state-of-the-art monocular depth prediction methods, and demonstrate various 3D effects produced using our predicted depth.

Topics & Concepts

Artificial intelligenceComputer visionParallaxMonocularComputer scienceMotion (physics)InferencePrior probabilityStereopsisComputer graphics (images)Bayesian probabilityAdvanced Vision and ImagingHuman Pose and Action RecognitionVideo Surveillance and Tracking Methods
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